Vectorize a loop to save time
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I have a big data set and my current code takes 2 hours. I am hoping to save time by vectorization if that is possible in my case.
I have a table Table with variables ID, t1, tend, p. My code is sth like:
x=zeros(size(Table.ID,1));
for i=1:size(Table.ID,1)
x(i)=sum(Table.t1<Table.t1(i) & Table.tend>Table.tend(i) & abs(Table.p-Table.p(i))>1);
end
So for each observation, I want to find number of observations that start before, ends after and have a p value in the neighborhood of 1. It takes 2 hours to run this loop. Any suggestion?
Thanks in advance!
2 件のコメント
Walter Roberson
2019 年 2 月 4 日
How are the t1 and tend values arranged? Are tend(i+1) = t1(i) such that together they partition into consecutive ranges that are completely filled between the first and last? Do they act to partition into non-overlapping ranges but with gaps? Are there overlapping regions? Are the boundaries already sorted?
採用された回答
Jan
2019 年 2 月 4 日
編集済み: Jan
2019 年 2 月 4 日
2 hours sounds long. Is the memory exhausted and the virtual memory slows down the execution? How large is the input?
Is this a typo:
x = zeros(size(Table.ID,1))
It creates a square matrix, but you access it as vector obly.
Does the table access need a remarkable amount of time?
n = size(Table.ID,1);
t1 = Table.t1;
tend = Table.tend;
p = Table.p;
x = zeros(n, 1);
for i = 1:n
x(i) = sum(t1 < t1(i) & tend > tend(i) & abs(p - p(i)) > 1);
end
If you sort one of the vectors, you could save some time:
[t1s, index] = sort(t1);
tends = tend(index);
ps = p(index);
for i = 2:n
m = t1s < t1s(i);
x(i) = sum(tends(m) > tends(i) & ...
abs(ps(m) - ps(i)) > 1);
end
Afterwards x has to be sorted inversly. If you provide some inputs, I could check the code before posting. I'm tired, perhaps I've overseen an obvious indexing error.
Is the shown code really the bottleneck of the original code?
その他の回答 (1 件)
Walter Roberson
2019 年 2 月 4 日
My mind is headed towards creating a pairwise mask matrix,
M = squareform(pdist(Table.p) > 1); %important that Table.p is a column vector
That would be comparatively fast. If the table is very big then it could fill up memory, though.
abs() is not needed for this; pdist will already have calculated distance as a non-negative number.
Now
Mi = M(i,:);
x(i)=sum(Table.t1(Mi)<Table.t1(i) & Table.tend(Mi)>Table.tend(i));
However you should do timing tests against
Mi = M(i,:);
x(i)=sum(Mi & Table.t1<Table.t1(i) & Table.tend>Table.tend(i));
and
Mi = M(i,:);
Tt = Table(Mi);
x(i)=sum(Tt.t1<Table.t1(i) & Tt.tend>Table.tend(i));
2 件のコメント
Walter Roberson
2019 年 2 月 4 日
abs(T.t1 - T.t1.')
would work as a distance function for you in R2016b and later.
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